Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
495636 | Applied Soft Computing | 2013 | 9 Pages |
The cAnt-Miner algorithm is an Ant Colony Optimization (ACO) based technique for classification rule discovery in problem domains which include continuous attributes. In this paper, we propose several extensions to cAnt-Miner. The main extension is based on the use of multiple pheromone types, one for each class value to be predicted. In the proposed μcAnt-Miner algorithm, an ant first selects a class value to be the consequent of a rule and the terms in the antecedent are selected based on the pheromone levels of the selected class value; pheromone update occurs on the corresponding pheromone type of the class value. The pre-selection of a class value also allows the use of more precise measures for the heuristic function and the dynamic discretization of continuous attributes, and further allows for the use of a rule quality measure that directly takes into account the confidence of the rule. Experimental results on 20 benchmark datasets show that our proposed extension improves classification accuracy to a statistically significant extent compared to cAnt-Miner, and has classification accuracy similar to the well-known Ripper and PART rule induction algorithms.
Graphical abstractFigure optionsDownload full-size imageDownload as PowerPoint slideHighlights► We propose several extensions to the cAnt-Miner algorithm. ► Main extension is based on the use of multiple pheromone types. ► Experimental results on 20 benchmark datasets. ► Results indicate accuracy improves to a statistically significant extent.